Brandon Rohrer
Brandon Rohrer
  • Видео 150
  • Просмотров 5 197 353

Видео

DataScienceForBeginnersSeriesPredictAnAnswerWithA high
Просмотров 3779 месяцев назад
DataScienceForBeginnersSeriesPredictAnAnswerWithA high
DataScienceForBeginnersAskQuestionYouCanAnswerWit high
Просмотров 1989 месяцев назад
DataScienceForBeginnersAskQuestionYouCanAnswerWit high
DataScienceForBeginnersIsYourDataReadyForDataScie high
Просмотров 2109 месяцев назад
DataScienceForBeginnersIsYourDataReadyForDataScie high
DataScienceForBeginners5QuestionsDataScienceCanAn high
Просмотров 3679 месяцев назад
DataScienceForBeginners5QuestionsDataScienceCanAn high
How Data Science Works
Просмотров 5 тыс.2 года назад
From the 2016 Microsoft Data science Summit in Atlanta, GA
How k-nearest neighbors works
Просмотров 8 тыс.3 года назад
Learn more: e2eml.school/221 at the End to End Machine Learning School
Build a 2D convolutional neural network, part 17: Cottonwood cheatsheet
Просмотров 1,3 тыс.3 года назад
Get the full course experience at e2eml.school/322 Put all the pieces together implementing a two dimensional convolutional neural network in Python to classify handwritten digits from the MNIST data set. The remainder of the course dives into the implementation in detail and shows how to extend this example to the more challenging CIFAR-10 data set.
Build a 2D convolutional neural network, part 16: Cottonwood code tour
Просмотров 5453 года назад
Get the full course experience at e2eml.school/322 Put all the pieces together implementing a two dimensional convolutional neural network in Python to classify handwritten digits from the MNIST data set. The remainder of the course dives into the implementation in detail and shows how to extend this example to the more challenging CIFAR-10 data set.
Build a 2D convolutional neural network, part 15: Rendering examples
Просмотров 9693 года назад
Get the full course experience at e2eml.school/322 Put all the pieces together implementing a two dimensional convolutional neural network in Python to classify handwritten digits from the MNIST data set. The remainder of the course dives into the implementation in detail and shows how to extend this example to the more challenging CIFAR-10 data set.
Build a 2D convolutional neural network, part 14: Collecting examples
Просмотров 8423 года назад
Get the full course experience at e2eml.school/322 Put all the pieces together implementing a two dimensional convolutional neural network in Python to classify handwritten digits from the MNIST data set. The remainder of the course dives into the implementation in detail and shows how to extend this example to the more challenging CIFAR-10 data set.
Build a 2D convolutional neural network, part 13: Loss history and text summary
Просмотров 4603 года назад
Get the full course experience at e2eml.school/322 Put all the pieces together implementing a two dimensional convolutional neural network in Python to classify handwritten digits from the MNIST data set. The remainder of the course dives into the implementation in detail and shows how to extend this example to the more challenging CIFAR-10 data set.
Build a 2D convolutional neural network, part 12: Testing loop
Просмотров 4883 года назад
Get the full course experience at e2eml.school/322 Put all the pieces together implementing a two dimensional convolutional neural network in Python to classify handwritten digits from the MNIST data set. The remainder of the course dives into the implementation in detail and shows how to extend this example to the more challenging CIFAR-10 data set.
Build a 2D convolutional neural network, part 11: The training loop
Просмотров 4243 года назад
Get the full course experience at e2eml.school/322 Put all the pieces together implementing a two dimensional convolutional neural network in Python to classify handwritten digits from the MNIST data set. The remainder of the course dives into the implementation in detail and shows how to extend this example to the more challenging CIFAR-10 data set.
Build a 2D convolutional neural network, part 10: Connecting layers
Просмотров 4423 года назад
Get the full course experience at e2eml.school/322 Put all the pieces together implementing a two dimensional convolutional neural network in Python to classify handwritten digits from the MNIST data set. The remainder of the course dives into the implementation in detail and shows how to extend this example to the more challenging CIFAR-10 data set.
Build a 2D convolutional neural network, part 9: Adding layers
Просмотров 5273 года назад
Build a 2D convolutional neural network, part 9: Adding layers
Build a 2D convolutional neural network, part 8: Training code setup
Просмотров 7503 года назад
Build a 2D convolutional neural network, part 8: Training code setup
Build a 2D convolutional neural network, part 7: Why Cottonwood?
Просмотров 5903 года назад
Build a 2D convolutional neural network, part 7: Why Cottonwood?
Build a 2D convolutional neural network, part 6: Examples of successes and failures
Просмотров 7143 года назад
Build a 2D convolutional neural network, part 6: Examples of successes and failures
Build a 2D convolutional neural network, part 5: Pre-trained model results
Просмотров 7373 года назад
Build a 2D convolutional neural network, part 5: Pre-trained model results
Build a 2D convolutional neural network, part 4: Model overview
Просмотров 8383 года назад
Build a 2D convolutional neural network, part 4: Model overview
Build a 2D convolutional neural network, part 3: MNIST digits
Просмотров 9313 года назад
Build a 2D convolutional neural network, part 3: MNIST digits
Build a 2D convolutional neural network, part 2: Overview
Просмотров 1,1 тыс.3 года назад
Build a 2D convolutional neural network, part 2: Overview
Build a 2D convolutional neural network, part 1: Getting started
Просмотров 2,6 тыс.3 года назад
Build a 2D convolutional neural network, part 1: Getting started
Build a 1D convolutional neural network, part 7: Evaluate the model
Просмотров 9413 года назад
Build a 1D convolutional neural network, part 7: Evaluate the model
Build a 1D convolutional neural network, part 6: Text summary and loss history
Просмотров 7353 года назад
Build a 1D convolutional neural network, part 6: Text summary and loss history
Build a 1D convolutional neural network, part 5: One Hot, Flatten, and Logging blocks
Просмотров 6163 года назад
Build a 1D convolutional neural network, part 5: One Hot, Flatten, and Logging blocks
Build a 1D convolutional neural network, part 4: Training, evaluation, reporting
Просмотров 7443 года назад
Build a 1D convolutional neural network, part 4: Training, evaluation, reporting
Build a 1D convolutional neural network , part 3: Connect the blocks into a network structure
Просмотров 6723 года назад
Build a 1D convolutional neural network , part 3: Connect the blocks into a network structure
Build a 1D convolutional neural network , part 2: Collect the Cottonwood blocks
Просмотров 2 тыс.3 года назад
Build a 1D convolutional neural network , part 2: Collect the Cottonwood blocks

Комментарии

  • @imranhussain-iy8xi
    @imranhussain-iy8xi 19 часов назад

    The interaction with the audience feels so personal.

  • @kamilbxl6
    @kamilbxl6 11 дней назад

    amazing video

  • @EzhilazhahiAM
    @EzhilazhahiAM 19 дней назад

    wow🙂

  • @Artelion-pk2he
    @Artelion-pk2he 28 дней назад

    Probably, one of the best intuitive explainers of why we like to use gradient descent in neural networks, which I ever seen.

  • @richardgordon
    @richardgordon 28 дней назад

    Wow! One of the clearest explanations of Bayes Theorem I’ve come across!

  • @neelabhchoudhary2063
    @neelabhchoudhary2063 28 дней назад

    this was super helpful

  • @RiadAhmed-ce6qo
    @RiadAhmed-ce6qo 29 дней назад

    excellent the AI chip can not avoid the principles of the system architecture of the hardware fundaments the rules and algorithm like round robin algorithm, FIFO etc and neurons also as follows the signal process of the data communications as well. here keep in mind binary , qubit and hybrid process. the voting process of blockchain for digital encryption is kind of like similar. Chip has main 3 gates AND Logic Boolean , OR Logic Boolean and Not logic and total combo of 7 gates.Qbit49 is a quantum are Shor's algorithm probability has 3 state also 3 methods quantum tunnelling, entanglement, superposition , binary has yes /no ,Qbit has Yes, No, (yes or no).

  • @abdollahmohebbatian2402
    @abdollahmohebbatian2402 Месяц назад

    ❤❤❤❤❤❤

  • @Sandydaysofficial
    @Sandydaysofficial Месяц назад

    Best Knowledge for real. The video is very helpful. ❤

  • @khuebner
    @khuebner Месяц назад

    Great presentation, Brandon. I prefer your simple graphics and pace over the highly distracting, animated videos from other educators.

  • @davidcarci6718
    @davidcarci6718 Месяц назад

    You will spent hours trying to find the right video, this 26 min clip is all you need.

  • @terryliu3635
    @terryliu3635 Месяц назад

    Great explanation!!

  • @shairurafif1922
    @shairurafif1922 Месяц назад

    Thanks for such an amaizing video

  • @liviumircea6905
    @liviumircea6905 2 месяца назад

    Very good

  • @pptmtz
    @pptmtz 2 месяца назад

    thanks

  • @John-wx3zn
    @John-wx3zn 2 месяца назад

    The first one put down is in the wrong spot.

  • @penponds
    @penponds 2 месяца назад

    Now in 2024, and I can’t imagine the degree of triggering all these assumption examples would give a certain disturbed minority of the population… Also I guess it’s only because statistics inhabits the furthest recesses of YT land that someone hasn’t called for it’s banning or demonetisation at the very least!

  • @John-wx3zn
    @John-wx3zn 2 месяца назад

    Hi Brandon, when giving it an unseen image, how do you know whether to draw a line from the vote percentage to the x or to the o?

  • @jameshopkins3541
    @jameshopkins3541 2 месяца назад

    You are not suppose to copy code from vid

  • @jameshopkins3541
    @jameshopkins3541 2 месяца назад

    What is i_conv: i_conv

  • @qjunhui21
    @qjunhui21 2 месяца назад

    It's great. However, the purpose of ReLU is to introduce non-linear functions rather than normalization.

  • @jameshopkins3541
    @jameshopkins3541 2 месяца назад

    Your PDF version please

  • @adnanhashem98
    @adnanhashem98 2 месяца назад

    I hope you find the below annotated summary of the explained method of "opening the box" helpful😊 In the process of going through the steps of the method, think about the following questions*: q1: What is the "box" design for? (e.g. What is the purpose of SVM?) q2: What is the "box" used for? (e.g. What is SVM used for?) q3: How to visualize the key concepts? (e.g. How to visualize SVM kernel trick?) q4: How the underlying Math works? I'd like to think of the below "steps" as strategies that I can select from and mix together (depending on the box I'm trying to open). Steps: 1. Read the original source that explains the "box" (e.g. scikit-learn docs).** 2. Read good Tutorial(s). 3. Watch good RUclips videos. 4. Read some good (blog) posts. 5. Explain the "box" to yourself and try to draw illustrations of the key concepts. 6. Choose a toy example (i.e. simple example that preserved the fundamental features of the "box".). 7. Explain it to a 12 year old (to avoid using jargon and to get to the essence of the "box"). 8. Understand the weaknesses of the box. (e.g. What conditions make SVM a poor method of choice?) So, that's it! This is how you open a box 🙂 Footnotes: * Of course some of the questions are not applicable to some "boxes" :) ** Be aware that this step might not be accessible to beginners.

  • @syedmurtazaarshad3434
    @syedmurtazaarshad3434 2 месяца назад

    Loved the analogies with real life philosophies, brilliant!

  • @akk2766
    @akk2766 2 месяца назад

    Nice explanation of how Machines Learn via Neural Networks. However, a downside of this video is that it is still teaching subconsciously that white is good and black is bad and all the racial connotations that go with that! It would have been so much better if the chosen colours had been say any colour that has no ties to race - say blue and green! I know I'll be lambasted for this but it is how I feel whether and nothing changes that...

    • @BrandonRohrer
      @BrandonRohrer 2 месяца назад

      You are absolutely right. It's on the list of reasons I cringe when I watch my past videos and things I am careful to avoid in new work. Thanks for the callout.

    • @akk2766
      @akk2766 2 месяца назад

      @@BrandonRohrer Thanks for your candid acknowledgement. I also note that my frame of mind was torn as I changed how I was bringing this up to avoid being lambasted. That last sense was meant to be: "I know I'll be lambasted for this but it is how I feel whether it happens or not and nothing changes that..."

  • @Karim-nq1be
    @Karim-nq1be 2 месяца назад

    That's a masterpiece, not only have I learned how in detail convolutional neural networks work, but also I've learned how I should explain hard subjects to others. Thank you.

  • @RonicTheEgg
    @RonicTheEgg 2 месяца назад

    3:33 why did -1.075 become positive?

  • @alirezagumaryan8301
    @alirezagumaryan8301 2 месяца назад

    very good explain. thanks :)

  • @yashsharma6112
    @yashsharma6112 3 месяца назад

    Very very rare way to explain a neural network in such a great depth. Loved the way you explained it ❤

  • @estifanosabebaw1468
    @estifanosabebaw1468 3 месяца назад

    the depth of the explanation and visualization, there is no word to describe how much it express and help to grasp the most fundamental and core concept of Neural Networks. THANKS Bra

  • @jameshopkins3541
    @jameshopkins3541 3 месяца назад

    NO CREO Q FUNCIONE

  • @adahaj
    @adahaj 3 месяца назад

    Just awesome @brandon I do have a question though, input image of 9x9 and filter of 3x3, how did we end up with feature map of 9x9 ? Shouldnt it be smaller than 9x9

  • @igorg4129
    @igorg4129 3 месяца назад

    Nice. Very nice actualy But I can think of 2 questions having an answer to which in this video would make the video from very nice to perfect. 1) In 1D, 2d, or 3d cases, is the process of fitting the separating line (or plane) iterative while some loss is being calculated just like in Neural networks? Or it is more like in Linear Regression where I can fit the line iteratively though, but there is no need to do it since there is a straightforward formula to find the slope and the intercept of the best-fitted line. 2) What is the advantage of the observation space being bent instead of bending the "cutting plane"? Thank you very much

  • @xarisalkiviadis2162
    @xarisalkiviadis2162 3 месяца назад

    What a diamond of a channel i just found ... incredible!

  • @StayTech-Rich
    @StayTech-Rich 3 месяца назад

    I had a diffi ultrasound time understanding the convolution layer, this course is the best among all courses I saw on RUclips, keep the good work, you saved me , I was struggling understanding and now I'm completely clear. Thanks alot

  • @lukas-hofer
    @lukas-hofer 3 месяца назад

    insanely good explanation, never seen anything like this. thanks a lot

  • @jonathanhadiprasetyanto521
    @jonathanhadiprasetyanto521 3 месяца назад

    How do you calculate the partial derivative of the loss in regards to the output?

  • @khachlu5506
    @khachlu5506 3 месяца назад

    Hello, I have a project on building a Deep k-Nearest Neighbors (DkNN) model for image recognition. Can you guide me on the steps needed to build the model?thank you!

  • @chernettuge4629
    @chernettuge4629 3 месяца назад

    Respect Sir, Thank you so much- I am more than satisfied with your lecture.

  • @chandrahaasvemula7251
    @chandrahaasvemula7251 3 месяца назад

    its clear till 17:57 , but i just lost it at 18:01, just didnt understand why each lines there changed from 1.0 to -0.2 , 0.0 , 0.8 , -0.5.......can someone explain ?

  • @victoraguirre7486
    @victoraguirre7486 4 месяца назад

    Hot damn this video is soo goood

  • @heidielhadad9860
    @heidielhadad9860 4 месяца назад

    The way you explain is amazing! And visually seeing the convolution step by step was just brilliant! Thank you so much! ❤

  • @VictorGoncharov-ln1dp
    @VictorGoncharov-ln1dp 4 месяца назад

    Nice video, the best one I've seen yet about the concept of partial autocorrelation!

  • @frbaucop
    @frbaucop 4 месяца назад

    Bonjour Q1 : At 5:42. Where the .96 comes from? The square "says" P(woman==0.2 , P(man) = .98. Should we read P(man AND long) = P(man) * P(man | long) = 0.98 * 0.04 = 0.04 Q2 : At 17:00 I understand the mean of the normal distribution in the back is 17. OK, but what is the standard deviation. Is it equal to the one calculated with the 3 values (13.9, 17.5, 14.1) , do we use the standard error or something else? This is not yet clear for me. Merci

  • @mastersdubai4729
    @mastersdubai4729 4 месяца назад

    Its not working,, any other options

  • @AurL_69
    @AurL_69 4 месяца назад

    This channel is a goldmine ty

  • @user-ge1xg7wz9s
    @user-ge1xg7wz9s 4 месяца назад

    не могу слушать это "хвайт"

  • @ThePowerofInspiration-ym7vr
    @ThePowerofInspiration-ym7vr 4 месяца назад

    Hi, Thank You so much. I want to be a Data Scientist. How do I go through your playlist. Can you please help me what to do first -last ?

  • @alexandrek.6024
    @alexandrek.6024 4 месяца назад

    The ice tea part killed me 🤣🤣

  • @jimjackson4256
    @jimjackson4256 4 месяца назад

    I wonder what he thought about the probability of talking snakes.